{"title":"了解饮食和 24 小时运动行为时间模式的分析方法:范围综述。","authors":"","doi":"10.1016/j.advnut.2024.100275","DOIUrl":null,"url":null,"abstract":"<div><p>Dietary and movement behaviors [physical activity (PA), sedentary behavior (SED), and sleep] occur throughout a 24-h day and involve multiple contexts. Understanding the temporal patterning of these 24-h behaviors and their contextual determinants is key to determining their combined effect on health. A scoping review was conducted to identify novel analytic methods for determining temporal behavior patterns and their contextual correlates. We searched Embase, ProQuest, and EBSCOhost databases in July 2022 to identify studies published between 1997 and 2022 on temporal patterns and their contextual correlates (e.g., locational, social, environmental, personal). We included 14 studies after title and abstract (<em>n</em> = 33,292) and full-text (<em>n</em> = 135) screening, of which 11 were published after 2018. Most studies (<em>n</em> = 4 in adults; <em>n</em> = 5 in children and adolescents), examined waking behavior patterns (i.e., both PA and SED) of which 3 also included sleep and 6 included contextual correlates. PA and diet were examined together in only 1 study of adults. Contextual correlates of dietary, PA, and sleep temporal behavior patterns were also examined. Machine learning with various clustering algorithms and model-based clustering techniques were most used to determine 24-h temporal behavior patterns. Although the included studies used a diverse range of methods, behavioral variables, and assessment periods, results showed that temporal patterns characterized by high SED and low PA were linked to poorer health outcomes, than those with low SED and high PA. This review identified temporal behavior patterns, and their contextual correlates, which were associated with adiposity and cardiometabolic disease risk, suggesting these methods hold promise for the discovery of holistic lifestyle exposures important to health. Standardized reporting of methods and patterns and multidisciplinary collaboration among nutrition, PA, and sleep researchers; statisticians; and computer scientists were identified as key pathways to advance future research on temporal behavior patterns in relation to health.</p></div>","PeriodicalId":7349,"journal":{"name":"Advances in Nutrition","volume":null,"pages":null},"PeriodicalIF":8.0000,"publicationDate":"2024-08-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://www.sciencedirect.com/science/article/pii/S2161831324001091/pdfft?md5=5afc0dcadcdd5d4876d4bd2488be911e&pid=1-s2.0-S2161831324001091-main.pdf","citationCount":"0","resultStr":"{\"title\":\"Analytic Methods for Understanding the Temporal Patterning of Dietary and 24-H Movement Behaviors: A Scoping Review\",\"authors\":\"\",\"doi\":\"10.1016/j.advnut.2024.100275\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<div><p>Dietary and movement behaviors [physical activity (PA), sedentary behavior (SED), and sleep] occur throughout a 24-h day and involve multiple contexts. 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引用次数: 0
摘要
饮食和运动行为(体力活动 [PA]、久坐行为 [SED] 和睡眠)贯穿一天的 24 小时,涉及多种环境。了解这些 24 小时行为的时间模式及其环境决定因素是确定它们对健康的综合影响的关键。我们进行了一次范围综述,以确定用于确定时间行为模式及其环境相关因素的新型分析方法。我们检索了 Embase、ProQuest 和 EBSCOhost 数据库(2022 年 7 月),以确定 1997 年至 2022 年间发表的有关时间行为模式及其环境相关因素(如地点、社会、环境和个人)的研究。经过标题和摘要(n=33292)以及全文(n=135)筛选,我们纳入了14项研究,其中11项研究发表于2018年之后。大多数研究(4 项针对成人;5 项针对儿童和青少年)考察了清醒时的行为模式(即活动量和 SED),其中 3 项还包括睡眠,6 项包括环境相关因素。只有一项针对成人的研究同时研究了活动量和饮食。此外,还研究了饮食、PA 和睡眠时间行为模式的上下文相关性。使用各种聚类算法和基于模型的聚类技术的机器学习被广泛用于确定 24 小时的时间行为模式。虽然纳入的研究使用了各种方法、行为变量和评估时间段,但结果显示,与低 SED 和高 PA 的时间行为模式相比,高 SED 和低 PA 的时间行为模式与较差的健康结果有关。本综述确定了与脂肪和心血管代谢疾病风险相关的时间行为模式及其背景相关因素,这表明这些方法有望发现对健康有重要影响的整体生活方式。对方法和模式的标准化报告以及营养、体育锻炼和睡眠研究人员、统计学家和计算机科学家之间的多学科合作被认为是未来推进与健康有关的时间行为模式研究的关键途径。
Analytic Methods for Understanding the Temporal Patterning of Dietary and 24-H Movement Behaviors: A Scoping Review
Dietary and movement behaviors [physical activity (PA), sedentary behavior (SED), and sleep] occur throughout a 24-h day and involve multiple contexts. Understanding the temporal patterning of these 24-h behaviors and their contextual determinants is key to determining their combined effect on health. A scoping review was conducted to identify novel analytic methods for determining temporal behavior patterns and their contextual correlates. We searched Embase, ProQuest, and EBSCOhost databases in July 2022 to identify studies published between 1997 and 2022 on temporal patterns and their contextual correlates (e.g., locational, social, environmental, personal). We included 14 studies after title and abstract (n = 33,292) and full-text (n = 135) screening, of which 11 were published after 2018. Most studies (n = 4 in adults; n = 5 in children and adolescents), examined waking behavior patterns (i.e., both PA and SED) of which 3 also included sleep and 6 included contextual correlates. PA and diet were examined together in only 1 study of adults. Contextual correlates of dietary, PA, and sleep temporal behavior patterns were also examined. Machine learning with various clustering algorithms and model-based clustering techniques were most used to determine 24-h temporal behavior patterns. Although the included studies used a diverse range of methods, behavioral variables, and assessment periods, results showed that temporal patterns characterized by high SED and low PA were linked to poorer health outcomes, than those with low SED and high PA. This review identified temporal behavior patterns, and their contextual correlates, which were associated with adiposity and cardiometabolic disease risk, suggesting these methods hold promise for the discovery of holistic lifestyle exposures important to health. Standardized reporting of methods and patterns and multidisciplinary collaboration among nutrition, PA, and sleep researchers; statisticians; and computer scientists were identified as key pathways to advance future research on temporal behavior patterns in relation to health.
期刊介绍:
Advances in Nutrition (AN/Adv Nutr) publishes focused reviews on pivotal findings and recent research across all domains relevant to nutritional scientists and biomedical researchers. This encompasses nutrition-related research spanning biochemical, molecular, and genetic studies using experimental animal models, domestic animals, and human subjects. The journal also emphasizes clinical nutrition, epidemiology and public health, and nutrition education. Review articles concentrate on recent progress rather than broad historical developments.
In addition to review articles, AN includes Perspectives, Letters to the Editor, and supplements. Supplement proposals require pre-approval by the editor before submission. The journal features reports and position papers from the American Society for Nutrition, summaries of major government and foundation reports, and Nutrient Information briefs providing crucial details about dietary requirements, food sources, deficiencies, and other essential nutrient information. All submissions with scientific content undergo peer review by the Editors or their designees prior to acceptance for publication.